Non-integer Order Filtration of Electromyographic Signals

Electromyography (EMG) is recently of growing interest of doctors and scientists as it provides a tool for muscle performance verification. In this paper a new approach to EMG signal processing is considered. This approach is non-integer order filtering. Bi-fractional filter is designed and filtering occurs through exact computation.

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